Diagnostic performance of neural network algorithms in skull fracture detection on CT scans: a systematic review and meta-analysis.

IF 1.7 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Guive Sharifi, Ramtin Hajibeygi, Seyed Ali Modares Zamani, Ahmed Mohamedbaqer Easa, Ashkan Bahrami, Reza Eshraghi, Maral Moafi, Mohammad Javad Ebrahimi, Mobina Fathi, Arshia Mirjafari, Janine S Chan, Irene Dixe de Oliveira Santo, Mahsa Asadi Anar, Omidvar Rezaei, Long H Tu
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引用次数: 0

Abstract

Background and aim: The potential intricacy of skull fractures as well as the complexity of underlying anatomy poses diagnostic hurdles for radiologists evaluating computed tomography (CT) scans. The necessity for automated diagnostic tools has been brought to light by the shortage of radiologists and the growing demand for rapid and accurate fracture diagnosis. Convolutional Neural Networks (CNNs) are a potential new class of medical imaging technologies that use deep learning (DL) to improve diagnosis accuracy. The objective of this systematic review and meta-analysis is to assess how well CNN models diagnose skull fractures on CT images.

Methods: PubMed, Scopus, and Web of Science were searched for studies published before February 2024 that used CNN models to detect skull fractures on CT scans. Meta-analyses were conducted for area under the receiver operating characteristic curve (AUC), sensitivity, specificity, and accuracy. Egger's and Begg's tests were used to assess publication bias.

Results: Meta-analysis was performed for 11 studies with 20,798 patients. Pooled average AUC for implementing pre-training for transfer learning in CNN models within their training model's architecture was 0.96 ± 0.02. The pooled averages of the studies' sensitivity and specificity were 1.0 and 0.93, respectively. The accuracy was obtained 0.92 ± 0.04. Studies showed heterogeneity, which was explained by differences in model topologies, training models, and validation techniques. There was no significant publication bias detected.

Conclusion: CNN models perform well in identifying skull fractures on CT scans. Although there is considerable heterogeneity and possibly publication bias, the results suggest that CNNs have the potential to improve diagnostic accuracy in the imaging of acute skull trauma. To further enhance these models' practical applicability, future studies could concentrate on the utility of DL models in prospective clinical trials.

神经网络算法在CT扫描颅骨骨折检测中的诊断性能:系统回顾和荟萃分析。
背景和目的:颅骨骨折的潜在复杂性以及潜在解剖学的复杂性给放射科医生评估计算机断层扫描(CT)带来了诊断障碍。由于放射科医生的短缺和对快速准确骨折诊断的需求不断增长,自动化诊断工具的必要性已经暴露出来。卷积神经网络(cnn)是一种潜在的新型医学成像技术,它使用深度学习(DL)来提高诊断准确性。本系统综述和荟萃分析的目的是评估CNN模型在CT图像上诊断颅骨骨折的效果。方法:检索PubMed、Scopus和Web of Science在2024年2月之前发表的使用CNN模型在CT扫描上检测颅骨骨折的研究。对受试者工作特征曲线下面积(AUC)、敏感性、特异性和准确性进行meta分析。Egger’s和Begg’s检验被用来评估发表偏倚。结果:对11项研究,20,798例患者进行了荟萃分析。在训练模型的体系结构内,CNN模型实现迁移学习预训练的汇总平均AUC为0.96±0.02。这些研究的敏感性和特异性的汇总平均值分别为1.0和0.93。准确度为0.92±0.04。研究显示了异质性,这可以用模型拓扑、训练模型和验证技术的差异来解释。未发现显著的发表偏倚。结论:CNN模型在颅骨骨折CT扫描上具有较好的识别效果。尽管存在相当大的异质性和可能的发表偏倚,但结果表明cnn有可能提高急性颅脑损伤成像的诊断准确性。为了进一步提高这些模型的实用性,未来的研究可以集中在DL模型在前瞻性临床试验中的应用。
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来源期刊
Emergency Radiology
Emergency Radiology RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.60
自引率
4.50%
发文量
98
期刊介绍: To advance and improve the radiologic aspects of emergency careTo establish Emergency Radiology as an area of special interest in the field of diagnostic imagingTo improve methods of education in Emergency RadiologyTo provide, through formal meetings, a mechanism for presentation of scientific papers on various aspects of Emergency Radiology and continuing educationTo promote research in Emergency Radiology by clinical and basic science investigators, including residents and other traineesTo act as the resource body on Emergency Radiology for those interested in emergency patient care Members of the American Society of Emergency Radiology (ASER) receive the Emergency Radiology journal as a benefit of membership!
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